A scattering transform for graphs based on heat semigroups, with an application for the detection of anomalies in positive time series with underlying periodicities

08/26/2022
by   Bernhard G. Bodmann, et al.
0

This paper develops an adaptive version of Mallat's scattering transform for signals on graphs. The main results are norm bounds for the layers of the transform, obtained from a version of a Beurling-Deny inequality that permits to remove the nonlinear steps in the scattering transform. Under statistical assumptions on the input signal, the norm bounds can be refined. The concepts presented here are illustrated with an application to traffic counts which exhibit characteristic daily and weekly periodicities. Anomalous traffic patterns which deviate from these expected periodicities produce a response in the scattering transform.

READ FULL TEXT
research
12/15/2018

Geometric Scattering on Manifolds

We present a mathematical model for geometric deep learning based upon a...
research
02/15/2022

Phase-Based Signal Representations for Scattering

The scattering transform is a non-linear signal representation method ba...
research
06/27/2017

Gabor frames and deep scattering networks in audio processing

In this paper a feature extractor based on Gabor frames and Mallat's sca...
research
07/20/2021

Parametric Scattering Networks

The wavelet scattering transform creates geometric invariants and deform...
research
07/11/2017

Underwater object classification using scattering transform of sonar signals

In this paper, we apply the scattering transform (ST), a nonlinear map b...
research
06/16/2022

The Scattering Transform Network with Generalized Morse Wavelets and Its Application to Music Genre Classification

We propose to use the Generalized Morse Wavelets (GMWs) instead of commo...
research
12/14/2019

Analytic inversion of a Radon transform on double circular arcs with applications in Compton Scattering Tomography

In this work we introduce a new Radon transform which arises from a new ...

Please sign up or login with your details

Forgot password? Click here to reset